Development of data-driven constitutive models for aerospace materials

<p>This study presents novel techniques to develop data-driven constitutive models. The adoption of data-based machine learning-driven models obtained from mechanical loading experiments allows for the accurate and computationally efficient prediction of the mechanical behaviour of materials e...

Full description

Bibliographic Details
Main Author: Tasdemir, B
Other Authors: Pellegrino, A
Format: Thesis
Language:English
Published: 2023
Subjects:
_version_ 1826311215039643648
author Tasdemir, B
author2 Pellegrino, A
author_facet Pellegrino, A
Tasdemir, B
author_sort Tasdemir, B
collection OXFORD
description <p>This study presents novel techniques to develop data-driven constitutive models. The adoption of data-based machine learning-driven models obtained from mechanical loading experiments allows for the accurate and computationally efficient prediction of the mechanical behaviour of materials eliminating the need for theoretical assumptions and potential constraints associated with traditional models.</p> <p>The research is divided into four phases. In the first phase, uniaxial compression experimental data is used to develop surrogate models for the temperature and strain-rate dependent stress-strain response of a polymeric syntactic foam. In the second phase, the proposed techniques are applied to the history-dependent non-monotonic uniaxial response of commercially pure titanium. The third phase introduces a strategy to formulate data-driven constitutive models from random multiaxial experiments. The obtained surrogate constitutive models are capable of capturing the in-plane stress response of isotropic, elastic-plastic materials loaded by combined normal and shear stresses. The feasibility of this approach is evaluated by conducting virtual experiments by means of Finite Element (FE) simulations in which a hollow, cylindrical, thin-walled test specimen is subjected to random histories of axial displacement and rotation. Finally, in the fourth phase, the methodology developed in the third phase is applied to the real experimental combined normal and shear response of aluminium specimens.</p> <p>To validate the surrogate models, their predictions are compared against experimental data not used in the training process. The results demonstrate a very good agreement between the measurements and the predictions of the data-driven surrogate models.</p> <p>In conclusion, this research proposes an innovative approach to data analytics and materials constitutive modelling based on machine learning techniques, offering significant potential to enhance the accuracy and efficiency of predicting the mechanical behaviour of aerospace materials.</p>
first_indexed 2024-03-07T08:05:02Z
format Thesis
id oxford-uuid:5c963ce5-508b-4316-8bba-38f71941f45d
institution University of Oxford
language English
last_indexed 2024-03-07T08:05:02Z
publishDate 2023
record_format dspace
spelling oxford-uuid:5c963ce5-508b-4316-8bba-38f71941f45d2023-10-25T12:51:23ZDevelopment of data-driven constitutive models for aerospace materialsThesishttp://purl.org/coar/resource_type/c_db06uuid:5c963ce5-508b-4316-8bba-38f71941f45dSupervised learning (Machine learning)Deep learning (Machine learning)Materials scienceSolid mechanicsPlasticityMechanical engineeringAerospace engineeringEnglishHyrax Deposit2023Tasdemir, BPellegrino, ATagarielli, V<p>This study presents novel techniques to develop data-driven constitutive models. The adoption of data-based machine learning-driven models obtained from mechanical loading experiments allows for the accurate and computationally efficient prediction of the mechanical behaviour of materials eliminating the need for theoretical assumptions and potential constraints associated with traditional models.</p> <p>The research is divided into four phases. In the first phase, uniaxial compression experimental data is used to develop surrogate models for the temperature and strain-rate dependent stress-strain response of a polymeric syntactic foam. In the second phase, the proposed techniques are applied to the history-dependent non-monotonic uniaxial response of commercially pure titanium. The third phase introduces a strategy to formulate data-driven constitutive models from random multiaxial experiments. The obtained surrogate constitutive models are capable of capturing the in-plane stress response of isotropic, elastic-plastic materials loaded by combined normal and shear stresses. The feasibility of this approach is evaluated by conducting virtual experiments by means of Finite Element (FE) simulations in which a hollow, cylindrical, thin-walled test specimen is subjected to random histories of axial displacement and rotation. Finally, in the fourth phase, the methodology developed in the third phase is applied to the real experimental combined normal and shear response of aluminium specimens.</p> <p>To validate the surrogate models, their predictions are compared against experimental data not used in the training process. The results demonstrate a very good agreement between the measurements and the predictions of the data-driven surrogate models.</p> <p>In conclusion, this research proposes an innovative approach to data analytics and materials constitutive modelling based on machine learning techniques, offering significant potential to enhance the accuracy and efficiency of predicting the mechanical behaviour of aerospace materials.</p>
spellingShingle Supervised learning (Machine learning)
Deep learning (Machine learning)
Materials science
Solid mechanics
Plasticity
Mechanical engineering
Aerospace engineering
Tasdemir, B
Development of data-driven constitutive models for aerospace materials
title Development of data-driven constitutive models for aerospace materials
title_full Development of data-driven constitutive models for aerospace materials
title_fullStr Development of data-driven constitutive models for aerospace materials
title_full_unstemmed Development of data-driven constitutive models for aerospace materials
title_short Development of data-driven constitutive models for aerospace materials
title_sort development of data driven constitutive models for aerospace materials
topic Supervised learning (Machine learning)
Deep learning (Machine learning)
Materials science
Solid mechanics
Plasticity
Mechanical engineering
Aerospace engineering
work_keys_str_mv AT tasdemirb developmentofdatadrivenconstitutivemodelsforaerospacematerials